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Image Processing with Python

TitleTimeRoomTeacher
Image Processing with Python16.10.2025 09:00 - 17:00 (Thu)Seminar room 01.001/002Dr. Markus Ankenbrand & Dr. Florian Goth
Image Processing with Python17.10.2025 09:00 - 17:00 (Fri)Seminar room 01.001/002Dr. Markus Ankenbrand & Dr. Florian Goth
Description: 

Data Carpentry develops and teaches workshops on the fundamental data skills needed to conduct research. Its target audience is researchers who have little to no prior computational experience, and its lessons are domain specific, building on learners' existing knowledge to enable them to quickly apply skills learned to their own research. Participants will be encouraged to help one another and to apply what they have learned to their own research problems.

For more information on what we teach and why, please see our paper "Good Enough Practices for Scientific Computing".

Who: This lesson assumes you have a working knowledge of Python and some previous exposure to the Bash shell. These requirements can be fulfilled by: a) completing a Software Carpentry Python workshop or b) completing a Data Carpentry Ecology workshop (with Python) and a Data Carpentry Genomics workshop or c) independent exposure to both Python and the Bash shell. If you’re unsure whether you have enough experience to participate in this workshop, please read over this detailed list, which gives all of the functions, operators, and other concepts you will need to be familiar with.

Where: GSLS Building, Beatrice-Edgell-Weg 21, 97074 Würzburg. Get directions with OpenStreetMap or Google Maps.

When: Oct 16-17, 2025; 9:00-17:00 Add to your Google Calendar.

Requirements: Participants must bring a laptop with a Mac, Linux, or Windows operating system (not a tablet, Chromebook, etc.) that they have administrative privileges on. They should have a few specific software packages installed (listed below).

Accessibility: We are committed to making this workshop accessible to everybody. The workshop organizers have checked that:

  • The room is wheelchair / scooter accessible.
  • Accessible restrooms are available.

We are dedicated to providing a positive and accessible learning environment for all. We do not require participants to provide documentation of disabilities or disclose any unnecessary personal information. However, we do want to help create an inclusive, accessible experience for all participants. We encourage you to share any information that would be helpful to make your Carpentries experience accessible. To request an accommodation for this workshop, please fill out the accommodation request form. If you have questions or need assistance with the accommodation form please email us.

Glosario is a multilingual glossary for computing and data science terms. The glossary helps learners attend workshops and use our lessons to make sense of computational and programming jargon written in English by offering it in their native language. Translating data science terms also provides a teaching tool for Carpentries Instructors to reduce barriers for their learners.

Workshop Recordings: Carpentries workshops are designed to be interactive rather than lecture-based, with lessons that build upon one another. To foster a positive online learning environment, we strongly recommend that participants join in real time. As a result, workshop recordings are not recommended and may not be available to learners.

Contact: Please email florian.goth@uni-wuerzburg.de or markus.ankenbrand@uni-wuerzburg.de for more information.

Roles: To learn more about the roles at the workshop (who will be doing what), refer to our Workshop FAQ.

Size: 
17/25
Hours: 
16
Level: 
Early Stage
Organizer: 
GSLS
Additional Line: 
with Dr. Florian Goth, Dr. Markus Ankenbrand & Maximilian Beuscher

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Make sure to have your @uni-wuerzburg.de email-address set in your user account first.
For more information about WueLogin click here. (external Link, German)

 

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